Robustness verification of ReLU networks via quadratic programming
作者:Aleksei Kuvshinov, Stephan Günnemann
摘要
Neural networks are known to be sensitive to adversarial perturbations. To investigate this undesired behavior we consider the problem of computing the distance to the decision boundary (DtDB) from a given sample for a deep neural net classifier. In this work we present a procedure where we solve a convex quadratic programming (QP) task to obtain a lower bound on the DtDB. This bound is used as a robustness certificate of the classifier around a given sample. We show that our approach provides better or competitive results in comparison with a wide range of existing techniques.
论文关键词:Machine learning, Robustness verification, Neural networks, Minimal adversarial perturbation, Quadratic programming
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论文官网地址:https://doi.org/10.1007/s10994-022-06132-9